spot_img

Date:

Share:

Qlik Open Lakehouse Now Generally Available, Giving Enterprises Rapid, AI-Ready Data on Apache Iceberg

Qlik Open Lakehouse includes Amazon Athena support and multi-engine access, plus deployment in the customer’s virtual private cloud (VPC) with automatic Iceberg optimisation and built-in data quality and lineage

Qlik®, a global leader in data integration, data quality, analytics, and artificial intelligence (AI), has announced the general availability of Qlik Open Lakehouse, a fully managed Apache Iceberg service in Qlik Talend Cloud® that delivers real-time pipelines, automated Iceberg optimisation, and true multi-engine access without lock-in. The result is an AI-ready data foundation that cuts time and cost between data and action.

Deployed in the customer’s own cloud account with bring-your-own-compute, Qlik Open Lakehouse combines change data capture (CDC) ingestion with automatic Iceberg optimisation and multi-engine access so teams can use the tools they already rely on, including Amazon Athena, Snowflake, Spark, Trino, and Amazon SageMaker for machine learning (ML). In preview, customers reported faster queries and meaningfully lower infrastructure costs as they shifted workloads from proprietary warehouses to open, optimised Iceberg tables.

“AI stalls when data is slow, fragmented, and expensive,” said Mike Capone, CEO of Qlik. “Qlik Open Lakehouse fixes that by giving teams a real-time, Iceberg-based foundation they can run in their cloud at enterprise scale and query with the engines they already use. It brings performance, cost control, and governance into one motion so decisions happen faster and models improve every day.”

What’s new

  • General availability of Qlik Open Lakehouse in Qlik Talend Cloud, deployed in the customer’s VPC with bring-your-own-compute for full security, performance, and cost control
  • Multi-engine access on day one, including Amazon Athena support so teams can query Iceberg tables serverlessly alongside Qlik analytics and other engines
  • SageMaker-ready data stored in governed Iceberg tables on Amazon Simple Storage Service (Amazon S3), making it easier for ML teams to access, prepare, and train models without building additional data copies
  • Automatic Iceberg optimisation for compaction, partitioning, and metadata maintenance to improve query performance and reduce storage footprint
  • Low-latency pipelines from hundreds of sources using CDC, with built-in data quality, lineage, cataloguing, and FinOps observability
  • Qlik Analytics™ and AI on top with the Qlik engine and workflow automation so insights can trigger actions in business systems

“The general availability of Qlik Open Lakehouse translates Qlik’s long-term strategy into a tangible reality for companies adopting open table formats,” said Mike Leone, Principal Analyst, Enterprise Strategy Group. “Its ability to handle large amounts of data quickly, optimise it in real time, and work with different tools in the cloud solves common problems with data being out of date, slow, or expensive. Because it also has Qlik’s robust integration and data governance, it provides a strong platform for AI and analytics that teams can adopt without having to completely rebuild their systems or switch to new tools.”

Why it matters

AI value is bottlenecked by data. Qlik Open Lakehouse closes that gap by giving enterprises data and analytics foundations for AI: trusted, explainable, and up-to-date data in an open format that any engine can query. The result is faster decision-making, lower total cost, and freedom of choice across analytics and ML. In preview, customers saw up to 5x faster query performance and up to 50 percent lower infrastructure cost as they removed unnecessary copies and tuned Iceberg tables at scale.

How it works

  • Open by design: Data lives in Apache Iceberg on customer object storage. The same tables are queryable from Qlik, Amazon Athena, Snowflake, Spark, Trino, and ML services like Amazon SageMaker.
  • Real time by default: CDC keeps tables current. Automatic optimisation maintains performance as data grows.
  • Governed and trusted: Integrated data quality rules, lineage, cataloguing, and access controls provide the assurance AI and regulated workloads require.
  • Built for action: The Qlik engine and automation connect insight to workflow, so teams do not stop at dashboards.

Availability

Qlik Open Lakehouse is available today for Qlik Talend Cloud customers, including Amazon Athena support. SageMaker integration for model training and inference on Iceberg data is supported via standard AWS patterns. Additional ecosystem updates are targeted for Q4 2025.

Learn more and request a demo at our Qlik Open Lakehouse solution page or contact your Qlik account team to enable Open Lakehouse in your environment.

spot_img
spot_img

━ More like this

Microsoft Work Trend Index – Why Human Agency Is the Real AI Story

People thought AI was going to take away our critical thinking skills. But as AI takes on more execution, new research shows workers are gaining more control over...

Vertiv Appoints Frieda He as Chief Procurement Officer

A global leader in critical digital infrastructure, today announced Frieda He has joined the company as Chief Procurement Officer (CPO). She will lead Vertiv’s...

Power, performance and profit: Optimising the future of Africa’s data centre operations

Africa’s digital economy is expanding at a remarkable pace. From mobile banking and cloud computing to the expansion of e-commerce and enterprise systems, nearly...

SAS advances its AI-ready data management foundation for industry agents and automation, with governance built-in

Integrated analytics and AI-driven automation help enterprises prepare, govern and activate data for trusted AI at scale. As enterprises race to operationalise AI, many are...

Microsoft launches AI for Non-profits Signature Credential at Women in Tech Summit

Microsoft South Africa today announced the launch of the AI for Non-profits Signature Credential as part of Microsoft Elevate, unveiled at the Women in...
spot_img